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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >The Application of Machine Learning Algorithms to the Analysis of Electromyographic Patterns From Arthritic Patients
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The Application of Machine Learning Algorithms to the Analysis of Electromyographic Patterns From Arthritic Patients

机译:机器学习算法在关节炎患者肌电图分析中的应用

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The main aim of our study was to investigate the possibility of applying machine learning techniques to the analysis of electromyographic patterns (EMG) collected from arthritic patients during gait. The EMG recordings were collected from the lower limbs of patients with arthritis and compared with those of healthy subjects (CO) with no musculoskeletal disorder. The study involved subjects suffering from two forms of arthritis, viz, rheumatoid arthritis (RA) and hip osteoarthritis (OA). The analysis of the data was plagued by two problems which frequently render the analysis of this type of data extremely difficult. One was the small number of human subjects that could be included in the investigation based on the terms specified in the inclusion and exclusion criteria for the study. The other was the high intra- and inter-subject variability present in EMG data. We identified some of the muscles differently employed by the arthritic patients by using machine learning techniques to classify the two groups and then identified the muscles that were critical for the classification. For the classification we employed least-squares kernel (LSK) algorithms, neural network algorithms like the Kohonen self organizing map, learning vector quantification and the multilayer perceptron. Finally we also tested the more classical technique of linear discriminant analysis (LDA). The performance of the different algorithms was compared. The LSK algorithm showed the highest capacity for classification. Our study demonstrates that the newly developed LSK algorithm is adept for the treatment of biological data. The muscles that were most important for distinguishing the RA from the CO subjects were the soleus and biceps femoris. For separating the OA and CO subjects however, it was the gluteus medialis muscle. Our study demonstrates how classification with EMG data can be used in the clinical setting. While such procedures are unnecessary for the diagnosis of the type of arthri-ntis present, an understanding of the muscles which are responsible for the classification can help to better identify targets for rehabilitative measures.
机译:我们研究的主要目的是研究将机器学习技术应用于分析步态患者关节炎患者的肌电图模式(EMG)的可能性。从患有关节炎的患者的下肢收集EMG记录,并将其与没有肌肉骨骼疾病的健康受试者(CO)进行比较。该研究涉及患有两种形式的关节炎的受试者,即风湿性关节炎(RA)和髋骨关节炎(OA)。数据分析受到两个问题的困扰,这经常使此类数据的分析变得极为困难。一个是根据研究的纳入和排除标准中指定的术语,可以纳入调查的少数人类受试者。另一个是EMG数据中存在较高的受试者内部和受试者间变异性。通过使用机器学习技术对两组患者进行分类,我们确定了关节炎患者使用的某些肌肉,然后确定了对于分类至关重要的肌肉。对于分类,我们使用最小二乘核(LSK)算法,神经网络算法(例如Kohonen自组织图),学习矢量量化和多层感知器。最后,我们还测试了线性判别分析(LDA)的更为经典的技术。比较了不同算法的性能。 LSK算法显示出最高的分类能力。我们的研究表明,新开发的LSK算法擅长处理生物学数据。区分RA和CO受试者最重要的肌肉是比目鱼肌和股二头肌。然而,为了分离OA和CO对象,它是臀中肌。我们的研究表明,在临床环境中如何使用带有EMG数据的分类。尽管此类程序对于诊断目前存在的关节炎类型是不必要的,但了解负责分类的肌肉可以帮助更好地确定康复措施的目标。

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